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Assessing the driver’s current level of working Memory load with high density functional near-infrared spectroscopy: a realistic driving simulator study

机译:利用高密度功能近红外光谱仪评估驾驶员当前的工作记忆负荷水平:真实的驾驶模拟器研究

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摘要

Cognitive overload or underload results in a decrease in human performance which may result in fatal incidents while driving. We envision that driver assistive systems which adapt their functionality to the driver’s cognitive state could be a promising approach to reduce road accidents due to human errors. This research attempts to predict variations of cognitive working memory load levels in a natural driving scenario with multiple parallel tasks and to reveal predictive brain areas. We used a modified version of the n-back task to induce five different working memory load levels (from 0-back up to 4-back) forcing the participants to continuously update, memorize, and recall the previous ‘n’ speed sequences and adjust their speed accordingly while they drove for approximately 60 minutes on a highway with concurrent traffic in a virtual reality driving simulator. We measured brain activation using multichannel whole head, high density functional near-infrared spectroscopy (fNIRS) and predicted working memory load level from the fNIRS data by combining multivariate lasso regression and cross-validation. This allowed us to predict variations in working memory load in a continuous time-resolved manner with mean Pearson correlations between induced and predicted working memory load over 15 participants of 0.61 (standard error (SE) 0.04) and a maximum of 0.8. Restricting the analysis to prefrontal sensors placed over the forehead reduced the mean correlation to 0.38 (SE 0.04), indicating additional information gained through whole head coverage. Moreover, working memory load predictions derived from peripheral heart rate parameters achieved much lower correlations (mean 0.21, SE 0.1). Importantly, whole head fNIRS sampling revealed increasing brain activation in bilateral inferior frontal and bilateral temporo-occipital brain areas with increasing working memory load levels suggesting that these areas are specifically involved in workload-related processing.
机译:认知超载或欠载会导致人员绩效下降,从而可能导致驾驶时发生致命事故。我们设想,使驾驶员辅助系统的功能适应驾驶员的认知状态的方法可能是减少因人为错误而导致的道路交通事故的有前途的方法。这项研究试图在具有多个并行任务的自然驾驶情况下预测认知工作记忆负荷水平的变化,并揭示预测性大脑区域。我们使用了n-back任务的修改版本,以诱导五种不同的工作内存负载级别(从0-back到4-back),迫使参与者不断更新,记忆和调用以前的“ n”个速度序列并进行调整当他们在高速公路上行驶约60分钟,同时在虚拟现实驾驶模拟器中同时行驶时,它们的速度相应提高。我们使用多通道全脑,高密度功能近红外光谱(fNIRS)和组合的套索多元回归和交叉验证从fNIRS数据预测了工作记忆负荷水平来测量大脑的激活。这使我们能够以连续的时间分辨方式来预测工作记忆负荷的变化,在15位参与者中,诱发和预测的工作记忆负荷之间的平均Pearson相关系数为0.61(标准误差(SE)0.04),最大值为0.8。将分析限制在额头上放置的前额叶传感器可将平均相关性降低至0.38(SE 0.04),表明可通过整个头部覆盖获得更多信息。此外,从外周心率参数得出的工作记忆负荷预测实现了低得多的相关性(平均值0.21,SE 0.1)。重要的是,全头fNIRS采样显示双侧下额叶和双侧颞枕脑区域的大脑激活增加,而工作记忆负荷水平升高,表明这些区域特别涉及工作量相关的处理。

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